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DfP 2026 : Data for Policy 2026 (DfP’26) - Call for Abstracts, Full Papers, and Panels | |||||||||||||||
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Call For Papers | |||||||||||||||
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Data for Policy 2026 (DfP’26) - Governance of/with AI: Implications for Data, Infrastructure, and Tech Sovereignty
Universitat Pompeu Fabra, Barcelona, Spain - 8th & 10th September 2026 Submission Deadline: 01 June 2026 The Conference Chairs warmly invite submissions in the form of abstracts, full papers and panel proposals for Data for Policy 2026 under the following theme: Governance of/with AI: Implications for Data, Infrastructure, and Tech Sovereignty. The tenth edition of the conference will focus on the reshaping effects of AI in governance and decision making. This year has witnessed a significant paradigm shift, sparking increased interest in and concern regarding AI governance. The development of AI and data infrastructure has become essential amid the ‘AI War’ between the United States and China, the hybrid conflicts in Europe, and the deployment of military technologies in the Middle East. Strategic investments now prioritize access to frontier technologies, the securing of critical minerals, energy production, and key locations for water supply and cooling. AI is challenging not only global economies but also political systems. We have entered an era where AI influences geopolitics, often at the expense of fundamental rights and values. The theme “Governance of/with AI” addresses the diverse global perspectives on this evolving technology. As AI continues to transform, it presents both unprecedented opportunities and complex challenges; furthermore, emerging developments such as quantum computing heighten existing uncertainties. This theme calls for a responsible and ethical societal response while fostering debate across multiple disciplines. We invite reflections and evidence-based research that explore and contest these views. Ranging from geopolitical promises to large-scale investments, social consequences, and legal frameworks, AI has become a truly transdisciplinary field. We welcome contributions from engineering, the humanities, and the social sciences that offer transformative perspectives on our collective future. Submissions are organised into six broad, interdisciplinary, cross-sectoral areas of interest, which form the standard tracks of the conference. Area 1: Digital & Data-driven Transformations in Governance Area 2: Technologies & Analytics Area 3: Policy & Literacy for Data Area 4: Ethics, Equity, and Trustworthiness Area 5: Algorithmic Governance Area 6: Global Challenges and Dynamic Threats Submission Formats: •Individual Extended Abstracts: These should present preliminary research, innovative ideas, or emerging perspectives related to the conference theme or other relevant areas of interest. •Full Papers: We invite comprehensive, well-researched papers or case studies. Full papers will undergo an integrated review process, with the potential for publication in the Data & Policy, peer-reviewed, open-access journal published by Cambridge University Press (2024 Impact Factor: 2.7, Q2 Public Administration; CiteScore: 3.5, Q1 Social Sciences Miscellaneous) following the conference. Read more about the integrated peer review process on this page. https://www.cambridge.org/core/journals/data-and-policy/information/author-instructions/preparing-your-materials#conference •Panel Proposals: Panel proposals should offer in-depth discussions on key issues aligned with the conference theme. Proposals should aim to provide actionable insights and foster dialogue that reflects both regional and global contexts. For detailed information on submission types, the conference committee, and important dates, we encourage you to visit our conference website. https://dataforpolicy.org/data-for-policy-2026/ Submission links can be found on this page: https://dataforpolicy.org/2026-submission-guidelines/ We eagerly anticipate receiving your exciting and innovative submissions that will enrich Data for Policy 2026 and contribute to shaping the future of AI-enabled governance. Join us at UPF Barcelona in 2026! For inquiries or further information about local arrangements and registrations, please contact dfp26@upf.edu For submissions, please contact team@dataforpolicy.org with kind regards, Data for Policy team on behalf of Manuel Portela, Carlos (Chato) Castillo , Vladimir Estivill-Castro, Migle Laukyte and Antoni Rubi-Puig from Universitat Pompeu Fabra Data for Policy 2026 (DfP’26) Conference Chairs Zeynep Engin (Data for Policy CIC), Jon Crowcroft (University of Cambridge and The Alan Turing Institute), and Stefaan Verhulst (New York University) Data for Policy Conference – General Chairs ------------------------------------------------------------------------------------------------------------- Conference Programme Committee: Susan Ariel Aaronson, George Washington University, USA Fola Adeleke, The Global Center on AI Governance, South Africa Rossella Arcucci, Imperial College London, UK Omar Isaac Asensio, Georgia Institute of Technology, USA He Bin, Tongji University, China Tuba Bircan, Vrije Universiteit Brussel, Belgium Ana Brandusescu, McGill University, Canada Ana Maria Bustamante Duarte, Universidad de Los Andes, Colombia Igor Calzada, University of the Basque Country, Spain Natalia Carfi, Open Data Charter, Argentina Lawrence Cheung, The Chinese University of Hong Kong (CUHK), Hong Kong Joep Crompvoets, KU Leuven, Belgium Ebinezer Florano, The University of the Philippines, The Philippines Sarah Giest, Leiden University, The Netherlands Yang Han, The University of Hong Kong (HKU), Hong Kong Regina Hučková, Pavol Jozef Šafárik University in Košice, Slovakia Ahmed Dooguy Kora, L’Ecole Supérieure Multinationale des Télécommunications, Senegal Jacqueline C.K. Lam, University of Hong Kong (HKU), Hong Kong Victor OK Li, The University of Hong Kong (HKU), Hong Kong Canhui Liu, University College London, UK Justin Longo, University of Regina, Canada Claudia Abreu Lopes, United Nations University, Malaysia Jock Martin,The European Environment Agency, Denmark Gianluca Misuraca, AI4Gov, Universidad Politécnica de Madrid, Spain Francesco Mureddu, The Lisbon Council, Belgium Ines Neves, Universidade de Porto, Portugal David, Love Opeyemi, University of Johannesburg, South Africa Marta Poblet, RMIT University; The Data Tank, Belgium Paula Rodriguez Müller, European Commission Joint Research Centre (JRC), Belgium Vania Sena, The University of Sheffield, UK Sara Thabit, European Commission Joint Research Centre (JRC), Italy Evren Tok, Hamad Bin Khalifa University, Qatar Gaby Umbach, Robert Schuman Centre for Advanced Studies, European University Institute, Italy Genoveva Vargas-Solar, CNRS, France-Mexico Masaru Yarime, The Hong Kong University of Science and Technology, Hong Kong |
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